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Question 8 3 pts Suppose you estimate a multiple regression model using OLS and the coefficient of determination is very high
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Multicollinearity is the correlation between the independent variables. In this case as a whole all the independent variables are able to explain the variation in dependent variable which is shown by the high value of the coefficient of determination but individual effect on dependent variable of each individual independent variable is very difficult to calculate due to high level of correlation among the variables. So, each variable individually comes out to be insignificant.

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